Su Zi-Long, Yan Wen-Liang, Li Hui-Min, Gao Lin-Yan, Shou Wen-Qi, Wu Jun
Guangming Food Group Shanghai Farm Co., Ltd., Yancheng 224151, China.
State Key Laboratory of Pollution Control and Resource Reuse, School of Environment, Nanjing University, Nanjing 210023, China.
Huan Jing Ke Xue. 2024 Dec 8;45(12):6818-6827. doi: 10.13227/j.hjkx.202401258.
The accurate forecasting of agricultural carbon emissions is essential for formulating strategies to achieve carbon peak and neutrality objectives within the agricultural sector. However, existing methodologies for predicting agricultural carbon emissions have notable limitations. To address these shortcomings, Shanghai farm was considered as a case study to conduct research utilizing a neural network approach. Agricultural carbon emissions from the Shanghai farm from 2011 to 2021 were computed using the emission-factor method. Subsequently, a Back Propagation (BP) neural network model was developed to predict carbon emissions, employing the GDP of the planting, animal husbandry, and fishery sectors as input variables. The model was further improved through the application of an optimized sparrow search algorithm, which was then employed to forecast the future carbon emissions of the farm. The results show that the BP neural network improved via the optimized sparrow search algorithm demonstrated a prediction accuracy of 96.14%, a root mean square error (RMSE) of 12 100 t·a and a correlation coefficient () of 0.995 2. These metrics underscored the superior performance of the enhanced model. Compared with the multiple running results of pre-improved models, the neural network improved by the optimized sparrow search algorithm enhanced both the accuracy and stability of carbon emission prediction significantly, with the prediction accuracy consistently approaching approximately 95%, the root mean square error remaining below 20 000 t·a, and the correlation coefficient exceeding 0.99. Predictive analysis of future carbon emissions from the Shanghai farm indicated a predominant contribution from the animal husbandry sector to the total carbon emissions, suggesting that effective management of the scale of animal husbandry operations could significantly mitigate overall carbon emissions.
准确预测农业碳排放对于制定农业领域实现碳达峰和碳中和目标的战略至关重要。然而,现有的农业碳排放预测方法存在显著局限性。为解决这些不足,以上海农场为例,采用神经网络方法进行研究。利用排放因子法计算了上海农场2011年至2021年的农业碳排放。随后,以种植业、畜牧业和渔业部门的国内生产总值为输入变量,建立了反向传播(BP)神经网络模型来预测碳排放。通过应用优化的麻雀搜索算法对模型进行进一步改进,然后用于预测该农场未来的碳排放。结果表明,经优化的麻雀搜索算法改进后的BP神经网络预测准确率为96.14%,均方根误差(RMSE)为12 吨·年,相关系数()为0.995 2。这些指标突出了改进后模型的优越性能。与改进前模型的多次运行结果相比,经优化的麻雀搜索算法改进的神经网络显著提高了碳排放预测的准确性和稳定性,预测准确率始终接近约95%,均方根误差保持在20 吨·年以下,相关系数超过0.99。对上海农场未来碳排放的预测分析表明,畜牧业部门对总碳排放的贡献最大,这表明有效管理畜牧业经营规模可显著减少总体碳排放。